Machine Learning As a Tool to Accelerate the Search for New Materials for Metal-Ion Batteries
Author:
Publisher
Pleiades Publishing Ltd
Link
https://link.springer.com/content/pdf/10.1134/S1064562423701612.pdf
Reference24 articles.
1. Computational design of materials for metal-ion batteries;A. A. Kabanov,2023
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4. C. Lv et al., “Machine learning: An advanced platform for materials development and state prediction in lithium-ion batteries,” Adv. Mater. 34 (25), 2101474 (2022).
5. T. Martynec et al., “Machine learning predictions of surface migration barriers in nucleation and non-equilibrium growth,” Commun. Mater. 2 (1), 90 (2021).
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